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Anomaly detection in hyperspectral images through spectral unmixing and low rank decomposition

机译:通过光谱解密和低等级分解在高光谱图像中检测异常检测

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Anomaly detection has been known to be a challenging, ill-posed problem due to the uncertainty of anomaly and the interference of noise. In this paper, we propose a novel low rank anomaly detection algorithm in hyperspectral images (HSI), where three components are involved. First, due to the highly mixed nature of pixels in HSI, instead of using the raw pixel directly for anomaly detection, the proposed algorithm applies spectral unmixing algorithms to obtain the abundance vectors and uses these vectors for anomaly detection. Second, for better classification, a dictionary is built based on the mean-shift clustering of the abundance vectors to better represent the highly-correlated background and the sparse anomaly. Finally, a low-rank matrix decomposition is proposed to encourage the sparse coefficients of the dictionary to be low-rank, and the residual matrix to be sparse. Anomalies can then be extracted by summing up the columns of the residual matrix. The proposed algorithm is evaluated on both synthetic and real datasets. Experimental results show that the proposed approach constantly achieves high detection rate while maintaining low false alarm rate regardless of the type of images tested.
机译:已知异常检测是由于异常的不确定度和噪音的干扰,是一个具有挑战性的问题。在本文中,我们提出了一种新的低级异常检测算法在高光谱图像(HSI)中,其中涉及三个组件。首先,由于HSI中的像素的高度混合性,而不是直接使用直接用于异常检测的原始像素,所提出的算法应用光谱解密算法以获得丰度向量并使用这些向量进行异常检测。其次,为了更好的分类,基于丰度向量的平均移位聚类来构建字典,以更好地代表高相关的背景和稀疏异常。最后,提出了一种低级矩阵分解,以鼓励字典的稀疏系数为低秩,并且剩余矩阵稀疏。然后可以通过求出残余矩阵的列来提取异常。在合成和实际数据集上评估所提出的算法。实验结果表明,该方法不断实现高检测率,同时保持低误报率,无论检测到的图像类型。

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